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Applications of deep learning and computer vision in large scale quantification of tree canopy cover and real-time estimation of street parking

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Academic year: 2021

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Figure

Figure  1-1:  Price  per  megabyte  of  cheapest  available indicates  year  of  1995,  and  green  line  indicates  year  of
Figure  1-2:  Plot  of lowest  ImageNet  classification  challenge  error over  time'
Figure  2-1:  Satellite  image  of junction  between  Portland  and  Washington  St  in  Cam- Cam-bridge,  MA.
Figure  3-1:  Top:  GSV  image  in  Singapore  and  associated  vegetation  labels.  Bottom:
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